人工智能与国际经理人的选拔过程:一个案例研究

L. Sommer
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引用次数: 0

摘要

人工智能(AI)工具在实际实施方面变得越来越容易,使它们能够在许多新领域得到应用,包括根据国际经验选择国际经理。在国际环境中选择人员是一项挑战,几十年来在实践和理论上一直是激烈辩论的主题。错误的决策是成本密集的,并可能导致经济失败。本研究的目的是在低编码的基础上测试机器学习算法——作为人工智能(AI)的子学科。为此目的,生成了一个虚构的用例,其中包含75名管理人员的相应数据集,并测试了它在国际任务人员选择方面的适用性。结果表明,基于这群人的国际经验,机器学习算法在为国际任务选择合适的经理时,只需很少的编程工作,就能达到80%以上的准确率。线性判别分析已被证明是特别合适的。训练和验证数据提供的值都在80%以上。关键词:人工智能,国际经验,管理者,机器学习
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Intelligence and the Selection Process of International Managers: A Case Study
Artificial Intelligence (AI) tools are becoming easier and easier in terms of practical implementation, enabling them to be used in many new areas, including the selection of international managers based on their international experience. The selection of personnel in an international environment is a challenge that has been the subject of heated debate for decades, both in practice and in theory. Wrong decisions are cost-intensive and possibly contribute to economic failure. The aim of the present study was to test machine learning algorithms - as sub-disciplines of Artificial Intelligence (AI) - on a low-coding basis. For this purpose, a fictitious use case with a corresponding data set of 75 managers was generated and its applicability in relation to personnel selection for an international task was tested. The results show that with very little programming effort, the ML algorithm achieved an accuracy of over 80% when selecting suitable managers for international assignments - based on the international experience of this group of people. The linear discriminant analysis has proven to be particularly suitable. Both the training and validation data provided values above 80%. Keywords: Artificial Intelligence, International Experience, Manager, Machine Learning
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